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Deep Quality Assessment of a Solar Reflector Based on Synthetic Data: Detecting Surficial Defects from Manufacturing and Use Phase

Alexios Papacharalampopoulos, Konstantinos Tzimanis, Kyriakos Sabatakakis, Panagiotis Stavropoulos

2020Sensors28 citationsDOIOpen Access PDF

Abstract

Vision technologies are used in both industrial and smart city applications in order to provide advanced value products due to embedded self-monitoring and assessment services. In addition, for the full utilization of the obtained data, deep learning is now suggested for use. To this end, the current work presents the implementation of image recognition techniques alongside the original the quality assessment of a Parabolic Trough Collector (PTC) reflector surface to locate and identify surface irregularities by classifying images as either acceptable or non-acceptable. The method consists of a three-step solution that promotes an affordable implementation in a relatively small time period. More specifically, a 3D Computer Aided Design (CAD) of the PTC was used for the pre-training of neural networks, while an aluminum reflector surface was used to verify algorithm performance. The results are promising, as this method proved applicable in cases where the actual part was manufactured in small batches or under the concept of customized manufacturing. Consequently, the algorithm is capable of being trained with a limited number of data.

Topics & Concepts

Reflector (photography)Computer scienceArtificial neural networkCADArtificial intelligenceDeep learningVisual inspectionParabolic troughPattern recognition (psychology)EngineeringEngineering drawingSolar energyElectrical engineeringOpticsLight sourcePhysicsIndustrial Vision Systems and Defect DetectionAdvanced Neural Network ApplicationsCurrency Recognition and Detection
Deep Quality Assessment of a Solar Reflector Based on Synthetic Data: Detecting Surficial Defects from Manufacturing and Use Phase | Litcius